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Model and heuristics for the multi-manned assembly line worker integration and balancing problem

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  • Adalberto Sato Michels
  • Alysson M. Costa

Abstract

This paper examines the balancing of assembly lines with multi-manned stations and a heterogeneous workforce. Both topics received considerable attention in the literature, but not in an integrated fashion. Combining these two characteristics gives rise to a highly combinatorial Multi-manned Assembly Line Worker Integration and Balancing Problem. When considering multi-manned stations, the already coupled decisions on assigning tasks to heterogeneous workers and workers to stations must be further linked with task scheduling assessments. We propose a Mixed-Integer Linear Programming model and develop two heuristic solution procedures, which tackle the problem with a hierarchical decomposition approach. Computational tests on a large dataset indicate that the proposed method can obtain good primal bounds in short computational times. We demonstrate that these results can be applied to the monolithic model either as a warm start or in a proximity search procedure to obtain synergistic gains with statistically significant differences. From a managerial perspective, we show that multi-manned stations can reduce the assembly line's length even in the presence of a heterogeneous workforce, which is crucial for many industries manufacturing large-size products.

Suggested Citation

  • Adalberto Sato Michels & Alysson M. Costa, 2024. "Model and heuristics for the multi-manned assembly line worker integration and balancing problem," International Journal of Production Research, Taylor & Francis Journals, vol. 62(24), pages 8719-8744, December.
  • Handle: RePEc:taf:tprsxx:v:62:y:2024:i:24:p:8719-8744
    DOI: 10.1080/00207543.2024.2347572
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